Open Access
Issue |
E3S Web Conf.
Volume 477, 2024
International Conference on Smart Technologies and Applied Research (STAR'2023)
|
|
---|---|---|
Article Number | 00102 | |
Number of page(s) | 8 | |
DOI | https://doi.org/10.1051/e3sconf/202447700102 | |
Published online | 16 January 2024 |
- PAPON Pierre, «Science and Technology: actors of development and international competition. A Prospective Analysis », Innovations, 2022/2 (n° 68), p. 199-219. DOI : 10.3917/inno.pr2.0125. URL : https://www.cairn.info/revue-innovations-2022-2-page-199.htm [Google Scholar]
- VAYRE Jean-Sébastien, «Artificial intelligence: between science and market. Some Sociohistorical Elements for a Better Understanding of a Strange Scientific Experiment (1956-1990)», Annales des Mines - Managing and Understanding, 2021/3 (N° 145), p. 55-69. DOI : 10.3917/geco1.145.0055. URL : https://www.cairn.info/revue-gerer-et-comprendre-2021-3-page-55.htm [Google Scholar]
- Shukla Shubhendu, S., and Jaiswal Vijay. “Applicability of artificial intelligence in different fields of life.” International Journal of Scientific Engineering and Research 1.1 (2013): 28-35. [Google Scholar]
- Simon, Herbert A. “Artificial intelligence: an empirical science.” Artificial intelligence 77.1 (1995): 95-127. [CrossRef] [Google Scholar]
- Kumar, Koushal, and Gour Sundar Mitra Thakur. “Advanced applications of neural networks and artificial intelligence: A review.” International journal of information technology and computer science 4.6 (2012): 57. [CrossRef] [Google Scholar]
- Kant, Elaine. “Understanding and automating algorithm design.” IEEE Transactions on Software Engineering 11 (1985): 1361-1374. [CrossRef] [Google Scholar]
- Marrella, Andrea. “Automated planning for business process management.” Journal on data semantics 8.2 (2019): 79-98. [CrossRef] [Google Scholar]
- Rosé, Carolyn, et al. “Analyzing collaborative learning processes automatically: Exploiting the advances of computational linguistics in computer-supported collaborative learning.” International journal of computer-supported collaborative learning 3 (2008): 237-271. [CrossRef] [Google Scholar]
- Pannu, Avneet. “Artificial intelligence and its application in different areas.” Artificial Intelligence 4.10 (2015): 79-84. [Google Scholar]
- Hassani, Hossein, et al. “Artificial intelligence (AI) or intelligence augmentation (IA): what is the future?.” Ai 1.2 (2020): 8. [Google Scholar]
- Edwards, Peter. “Aquaculture environment interactions: past, present and likely future trends.” Aquaculture 447 (2015): 2-14. [CrossRef] [Google Scholar]
- Grigorakis, K., and G. Rigos. “Aquaculture effects on environmental and public welfare–the case of Mediterranean mariculture.” Chemosphere 85.6 (2011): 899-919. [CrossRef] [PubMed] [Google Scholar]
- Iwama, George K. “Interactions between aquaculture and the environment.” Critical Reviews in Environmental Science and Technology 21.2 (1991): 177-216. [Google Scholar]
- Mañanós, Evaristo L., Jerónimo Chirivella, and Francisco J. Espinós. “Diversification of the production cycle.” (2011). [Google Scholar]
- Director, ICAR-CIBA. “English-Hindi Glossary Fisheries Science and Aquaculture.” (2015). [Google Scholar]
- Boudouresque, Charles-François, et al. “Impacts of marine and lagoon aquaculture on macrophytes in Mediterranean benthic ecosystems.” Frontiers in Marine Science 7 (2020): 218. [CrossRef] [Google Scholar]
- Ortega, Aurelio, et al. “Aquaculture in the Alboran Sea.” Alboran Sea-Ecosystems and Marine Resources. Cham: Springer International Publishing, 2021. 659-706. [CrossRef] [Google Scholar]
- Vo, Thi Thu Em, et al. “Overview of smart aquaculture system: Focusing on applications of machine learning and computer vision.” Electronics 10.22 (2021): 2882. [CrossRef] [Google Scholar]
- Gladju, J., Biju Sam Kamalam, and A. Kanagaraj. “Applications of data mining and machine learning framework in aquaculture and fisheries: A review.” Smart Agricultural Technology 2 (2022): 100061. [CrossRef] [Google Scholar]
- Liu, Peiyuan, Yuxiong Huang, and Slav W. Hermanowicz. “Shifting entrepreneurial landscape and development performance of water startups in emerging water markets.” Plos one 16.2 (2021): e0246282. [CrossRef] [PubMed] [Google Scholar]
- Hoang, Tuan-Dung, et al. “Artificial intelligence in pollution control and management: status and future prospects.” Artificial Intelligence and Environmental Sustainability: Challenges and Solutions in the Era of Industry 4.0 (2022): 23-43. [Google Scholar]
- Manjakkal, Libu, et al. “Connected sensors, innovative sensor deployment, and intelligent data analysis for online water quality monitoring.” IEEE Internet of Things Journal 8.18 (2021): 13805-13824. [CrossRef] [Google Scholar]
- Paepae, Thulane, Pitshou N. Bokoro, and Kyandoghere Kyamakya. “From fully physical to virtual sensing for water quality assessment: A comprehensive review of the relevant state-of-the-art.” Sensors 21.21 (2021): 6971. [CrossRef] [PubMed] [Google Scholar]
- Mustapha, Umar Farouk, et al. “Sustainable aquaculture development: a review on the roles of cloud computing, internet of things and artificial intelligence (CIA).” Reviews in Aquaculture 13.4 (2021): 2076-2091. [CrossRef] [Google Scholar]
- Mandal, Arghya, and Apurba Ratan Ghosh. “Role of artificial intelligence (AI) in fish growth and health status monitoring: a review on sustainable aquaculture.” Aquaculture International (2023): 1-30. [Google Scholar]
- Pavkin, Dmitriy Yu, et al. “Development Results of a Cross-Platform Positioning System for a Robotics Feed System at a Dairy Cattle Complex.” Agriculture 13.7 (2023): 1422. [CrossRef] [Google Scholar]
- Tournay, Virginie. Artificial intelligence. The political stakes of improving human capacities. Editions Ellipses, 2020. [Google Scholar]
- Muraccioli, Pascal. Location of an aquaculture farm in Corsica. Use of decision support methods. Diss. Corte, 1998. [Google Scholar]
- Food and Agriculture Organization of the United Nations (FAO). The global situation of fisheries and aquaculture. Towards a blue transformation ; FAO : Rome, Italy, 2022, pp.117-123. [Google Scholar]
- Sylla, Diogone. Fusion of data from different satellite sensors for monitoring water quality in coastal areas. Application to the coast of the PACA region. Diss. University of Toulon, 2014. [Google Scholar]
- Food and Agriculture Organization of the United Nations (FAO). The global situation of fisheries and aquaculture. Towards a blue transformation; FAO: Rome, Italy, 2022, p.132. [Google Scholar]
- ZOUINAR, Moustafa. Evolution of Artificial Intelligence: what are the challenges for human activity and the human-machine relationship at work? Activities, 2020, no 17-1. [Google Scholar]
- Aubin, Joël, et al. “Integrated Multi Trophic Aquaculture: the IMTA Effect project.” (2019). [Google Scholar]
- SARTI OTMANE. Environmental approach of the interaction of a fish farming activity with its local ecosystem: case of the bay of M'diq Moroccan Mediterranean.” Master’s thesis. 2016; p.10. [Google Scholar]
- Thebaud, Olivier. “Blue economy, common goods and sustainable development.” Maritime Journal 519 (2021): 22-28. [Google Scholar]
- Arid H, Moudni H, Orbi A, Talbaoui M, Idrissi J I, Massik Z, et al. Remote sensing and GIS for integrated management of aquaculture potential. GEO OBSERVER. Royal Centre for Remote Sensing in Space, (2005) ; (14), 63-79. [Google Scholar]
- ANTOINE-SANTONI, Thierry. From wireless sensor networks to ambient intelligence in environmental monitoring. Synthesis of work. 2019. PhD thesis. University of Corsica Pasquale Paoli. [Google Scholar]
- European Commission “Communication From The Commission to the European Parliament, The Council, The European Economic and Social Committee and The Committee of the Regions.” Brussels, 2021, Com(2021). P.14-15. [Google Scholar]
- Chow, Jean-Yves, et Matthieu Brun. «Singapore: the Asian dragon’s dreams of food self-sufficiency», Sébastien Abis éd., Le Déméter 2022. Food : new frontiers. IRIS editions, 2022, pp. 269-286. [Google Scholar]
- DALLAIRE-NICHOLAS, P. N. The impact of artificial intelligence in environmental law. Essay submitted to the University of Sherbrooke, Quebec, 2021, p. 67. [Google Scholar]
- Slimani, K., Khoulji, S., Mortreau, A., & Kerkeb, M. L. (2024). From tradition to innovation: The telecommunications metamorphosis with AI and advanced technologies. Journal of Autonomous Intelligence, 7(1). [Google Scholar]
Current usage metrics show cumulative count of Article Views (full-text article views including HTML views, PDF and ePub downloads, according to the available data) and Abstracts Views on Vision4Press platform.
Data correspond to usage on the plateform after 2015. The current usage metrics is available 48-96 hours after online publication and is updated daily on week days.
Initial download of the metrics may take a while.